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High-Resolution Linear Time-Frequency Analysis Method

A time-frequency analysis and high-resolution technology, applied in the field of radio signal processing, can solve the problems of complex modulation signal processing performance that needs further investigation, limited linear frequency modulation signal analysis, and affecting engineering application value, etc., to achieve good analysis and processing performance, Improve the effect of two-dimensional discrimination and improve the effect of time-frequency analysis and processing

Active Publication Date: 2018-06-12
NO 8511 RES INST OF CASIC
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Problems solved by technology

[0005] In addition to the above two classic time-frequency analysis methods, scholars at home and abroad have also proposed a variety of improved methods. For example, L.B.Almeida introduced the fractional Fourier transform into the field of signal processing, and used its linear transformation properties to eliminate the influence of cross terms. However, this method is only applicable to For the analysis of linear frequency modulation signals, the scope of application is limited; in the article "Analysis of multicomponent LFM signals by combined Wigner-Hough transform" published by Barbarossa.S et al. on IEEE Trans.on SP in 1995, it is proposed to use Wigner-Hough transform - Hough Transform (Wigner-HoughTransform, WHT) analyzes and processes the mixed linear frequency modulation signal, but due to the large amount of calculation of the WHT method, it affects its engineering application value; Qi Lin and others published it in "Chinese Science" in 2003 In the article "Detection and Parameter Estimation of Multi-component LFM Signal Based on Fractional Fourier Transform", a multi-component linear frequency modulation signal analysis technology is proposed based on fractional Fourier transform, and the Newton iteration method is used to reduce the computational complexity; Dai Qionghai In the article "Subspace Decomposition of Noisy LFM Signals Based on Randon-STFT Transform" published in "Acta Electronics" in 1997, they combined STFT with Randon transform and proposed a linear frequency modulation signal based on Randon-STFT transform. detection and analysis; but the above two methods are limited to the analysis of linear frequency modulation signals, and their processing performance for complex modulation signals needs further investigation

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Embodiment 1

[0082] The implementation steps of a high-resolution linear time-frequency analysis method using sliding interception are as follows:

[0083] Step 1: Sliding interception of the signal to be analyzed to obtain sub-segment observation data.

[0084] 1a) Assuming Δω is the expected instantaneous frequency resolution of time-frequency analysis, it can be known from the uncertainty principle that the analysis window function width Δt in the short-time Fourier transform linear time-frequency analysis method satisfies the following relationship:

[0085] ΔtΔω≥0.5

[0086] From "Modern Signal Processing", Tsinghua University Press, 2002, p. 362

[0087] In order to obtain the highest time resolution in the time-frequency analysis results, the width of the analysis window function in the short-time Fourier transform linear time-frequency analysis method should take the minimum value, that is

[0088]

[0089] When calculating according to the above formula, the calculation speed...

Embodiment 2

[0133] The implementation steps of a high-resolution linear time-frequency analysis method using block interception are as follows:

[0134] Step 1. Intercept the signal to be analyzed in blocks to obtain sub-segment observation data.

[0135] 1a) Assuming Δω is the expected instantaneous frequency resolution of time-frequency analysis, it can be known from the uncertainty principle that the analysis window function width Δt in the short-time Fourier transform linear time-frequency analysis method satisfies the following relationship:

[0136] ΔtΔω≥0.5

[0137] From "Modern Signal Processing", Tsinghua University Press, 2002, p. 362,

[0138] In order to obtain the highest time resolution in the time-frequency analysis results, the width of the analysis window function in the short-time Fourier transform linear time-frequency analysis method should take the minimum value, namely:

[0139]

[0140] When calculating according to the above formula, the calculation speed of t...

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Abstract

The invention discloses a high resolution linear time-frequency analysis method. An iteration self-adaption method is adopted to obtain a high resolution instantaneous frequency estimation result, compared with a linear time-frequency analysis method, the time-frequency two-dimensional resolution ratio is substantially improved, and the two-dimensional distinction degree of multiple signals in a time-frequency domain can be remarkably improved; and linear transformation is adopted to perform analysis and processing on the signals, and compared with a nonlinear time-frequency analysis method, influence of cross terms is effectively eliminated, and a time-frequency analysis and processing effect of multiple time-frequency aliasing signals can be further improved. A convergent time-frequency analysis result can be obtained through a few iterations, and has good performance of analyzing and processing linear frequency modulation signals and nonlinear frequency modulation signals, and compared with other improved type time-frequency analysis method, the calculated amount is substantially reduced and the applicability is stronger.

Description

technical field [0001] The invention belongs to the technical field of radio signal processing, in particular to a high-resolution linear time-frequency analysis method. Background technique [0002] Modern wars, especially several local wars in the 1990s show that radio electronic reconnaissance technology has developed from an early auxiliary support role to an important factor involving the entire combat operation. Electronic warfare is an important branch of Electronic Warfare (EW, Electronic Warfare). Electronic warfare microwave receiver is an important part of electronic reconnaissance system and intelligence support system. Its main function is to receive non-cooperative signals in complex signal environments, reconnaissance The performance of reception directly affects the effect of interference. Its main reconnaissance objects are radar signals and communication signals. In the modern electronic reconnaissance signal environment, the signal form is becoming more ...

Claims

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G01R23/16
CPCG01R23/16
Inventor 刘志凌孟大岗朱晓丹宋海伟
Owner NO 8511 RES INST OF CASIC
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